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Cell[CellGroupData[{

Cell["\<\
simulate trajectory of magnetization components after reaction with \
parahydrogen\
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simulate spectrum after ALTADENA and a small flip angle pulse\
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Cell[CellGroupData[{

Cell["\<\
simulate spectrum after ALTADENA with a large flip angle pulse\
\>", "Subsubsection",
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